Question Directed Graph Attention Network for Numerical Reasoning over Text
Question Directed Graph Attention Network for Numerical Reasoning over Text
Kunlong Chen Weidi Xu Xingyi Cheng Zou Xiaochuan Yuyu Zhang Le Song Taifeng Wang Yuan Qi Wei Chu

Abstract
Numerical reasoning over texts, such as addition, subtraction, sorting and counting, is a challenging machine reading comprehension task, since it requires both natural language understanding and arithmetic computation. To address this challenge, we propose a heterogeneous graph representation for the context of the passage and question needed for such reasoning, and design a question directed graph attention network to drive multi-step numerical reasoning over this context graph. The code link is at: https://github.com/emnlp2020qdgat/QDGAT
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| question-answering-on-drop-test | QDGAT (ensemble) | F1: 88.38 |
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